DS1 spectrogram: Cardiologist-Level Arrhythmia Detection with Convolutional Neural Networks

Cardiologist-Level Arrhythmia Detection with Convolutional Neural Networks

1707.01836

Authors

Pranav Rajpurkar,Awni Y. Hannun,Masoumeh Haghpanahi,Codie Bourn,Andrew Y. Ng

Abstract

We develop an algorithm which exceeds the performance of board certified cardiologists in detecting a wide range of heart arrhythmias from electrocardiograms recorded with a single-lead wearable monitor. We build a dataset with more than 500 times the number of unique patients than previously studied corpora.

On this dataset, we train a 34-layer convolutional neural network which maps a sequence of ECG samples to a sequence of rhythm classes. Committees of board-certified cardiologists annotate a gold standard test set on which we compare the performance of our model to that of 6 other individual cardiologists.

We exceed the average cardiologist performance in both recall (sensitivity) and precision (positive predictive value).

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